Question

A new fad diet called Trim-to-the-MAX is running some tests that they can use in advertisements. They sample 25 of their user
Days on Diet Weight Lost
Regression Statistics Multiple R 0.9851 R Square 0.9705 Adjusted R Square 0.9668 Standard Error 1.9173 Observations ANOVA SS
Coefficients Standard Error t Stat P-value Lower 95% Upper 95% Intercept 0.4912 1.3746 0.3574 0.7301 2.6785 3.6610 Days on Di
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From the information in the question the response variable y is weight loss and the explanatory variable x is days on diet. T

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